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Poster
Fast 2D Convolutions and Cross-Correlations Using Scalable Architectures
- Citation Author(s):
- Submitted by:
- Cesar Carranza
- Last updated:
- 4 October 2018 - 9:51am
- Document Type:
- Poster
- Document Year:
- 2018
- Event:
- Presenters:
- Cesar Carranza
- Paper Code:
- 3392
- Categories:
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The manuscript describes fast and scalable architectures and associated algorithms for computing convolutions and cross-correlations. The basic idea is to map 2D convolutions and cross-correlations to a collection of 1D convolutions and cross-correlations in the transform domain. This is accomplished through the use of the Discrete Periodic Radon Transform (DPRT) for general kernels and the use of SVD-LU decompositions for low-rank kernels.
The approach uses scalable architectures that can be fitted into modern FPGA and Zynq-SOC devices. Based on different types of available resources, for PxP blocks, 2D convolutions and cross-correlations can be computed in just O(P) clock cycles up to O(P^2) clock cycles. Thus, there is a trade-off between performance and required numbers and types of resources. We provide implementations of the proposed architectures using modern programmable devices (Virtex-7 and Zynq-SOC). Based on the amounts and types of required resources, we show that the proposed approaches significantly outperform current methods.